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Estimating the time-varying parameters of SDE models by maximum principle

机译:用最大原理估计SDE模型的时变参数

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We present a parameter estimation method of stochastic differential equations with time-varying coefficients, where data can be observed at discrete points of time. Our objective is to develop the uniform mathematical technique to solve the parameter estimation problem for stochastic differential equations with both ordinary and fractional Brownian motions. This estimation principle is based on the replacement of a stochastic differential equation by a system of ordinary differential equations, which present the moment functions, and on the application of the Pontryagin's maximum principle to find the optimal estimates of the time-varying coefficients of the initial equation. The key point is the constraints structural selection, which leads to major modifications of algorithms of analytical and numerical solutions. This estimation method is applied to study the North Atlantic herring population dynamics.
机译:我们提出了一种具有时变系数的随机微分方程的参数估计方法,其中可以在离散的时间点观察数据。我们的目标是开发统一的数学技术,以解决具有常布朗运动和分数布朗运动的随机微分方程的参数估计问题。该估计原理是基于用一阶微分方程组代替一个随机微分方程组,该系统具有矩函数,并且基于庞特里亚金最大原理的应用来找到初始时变系数的最优估计。方程。关键是约束结构的选择,这导致对解析和数值解算法的重大修改。该估计方法适用于研究北大西洋鲱鱼种群动态。

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